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Patient-Specific Model Based Segmentation of Lung Computed Tomographic Images

机译:基于患者特定模型的肺部CT图像分割

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Segmentation of lung tissue from CT images is a challenging task in computer aided diagnosis systems. In this work, a patient-specific, automated model based approach to segment lung is proposed. Patient specific shape knowledge is obtained by preprocessing the same patient's stack of lung CT slices. The algorithm divides the patient's stack into many groups and the first 'n' slices with maximum lung area from each group are selected and stored in the image database for further processing. Landmark points representing the boundary of the lungs are identified from each slice in the database and stored as shape vectors in the image database. Principal component analysis (PCA) reduces the number of landmark points, retains the major variations in the points in every slice in the database and constructs a shape model called point distribution model (PDM). As the model is generated from the same subject's CT slices, it is initialized at the centroid of the diseased CT slice without manual intervention. The generated shape model can be retained for all the future examinations of the patient. The approach is tested using two datasets: one set with eight tuberculosis CT stacks and the other containing six pneumonia and six lung consolidation CT stacks. The accuracy, average similarity index obtained using the overlap score and dice coefficient for both sets are (97%, 97.9%), (0.970, 0.962) and (0.985, 0.983) respectively. The results show that the approach used in model construction to segment lungs from CT image slices has greatly improved segmentation accuracy.
机译:在计算机辅助诊断系统中,从CT图像分割肺组织是一项艰巨的任务。在这项工作中,提出了一种针对患者的,基于自动模型的肺段分割方法。通过预处理同一患者的肺部CT切片堆栈,可以获得患者特定的形状知识。该算法将患者的堆栈分为多个组,并从每个组中选择具有最大肺部面积的第一个“ n”个切片,并将其存储在图像数据库中以进行进一步处理。从数据库中的每个切片中识别出代表肺部边界的地标点,并将其作为形状矢量存储在图像数据库中。主成分分析(PCA)减少了界标点的数量,保留了数据库中每个切片中点的主要变化,并构建了一个称为点分布模型(PDM)的形状模型。由于该模型是从同一受试者的CT切片生成的,因此无需人工干预即可在患病CT切片的质心处对其进行初始化。所生成的形状模型可以保留下来,供患者将来进行所有检查。使用两个数据集对该方法进行了测试:一组具有八个结核CT堆栈,另一组包含六个肺炎和六个肺巩固CT堆栈。使用重叠分数和骰子系数获得的两组准确性,平均相似性指数分别为(97%,97.9%),(0.970,0.962)和(0.985,0.983)。结果表明,用于模型构建的从CT图像切片分割肺部的方法大大提高了分割精度。

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